Department of Physics, Tohoku University, Sendai 980-8578, Japan.
Graduate School of Information Sciences, Tohoku University, Sendai 980-8579, Japan.
Phys Rev E. 2017 Jun;95(6-1):061302. doi: 10.1103/PhysRevE.95.061302. Epub 2017 Jun 21.
A data-science approach to solving the ill-conditioned inverse problem for analytical continuation is proposed. The root of the problem lies in the fact that even tiny noise of imaginary-time input data has a serious impact on the inferred real-frequency spectra. By means of a modern regularization technique, we eliminate redundant degrees of freedom that essentially carry the noise, leaving only relevant information unaffected by the noise. The resultant spectrum is represented with minimal bases and thus a stable analytical continuation is achieved. This framework further provides a tool for analyzing to what extent the Monte Carlo data need to be accurate to resolve details of an expected spectral function.
提出了一种数据科学方法来解决解析延拓病态逆问题。问题的根源在于,即使是虚时间输入数据的微小噪声也会对推断出的实频谱产生严重影响。通过现代正则化技术,我们消除了本质上携带噪声的多余自由度,只留下不受噪声影响的相关信息。所得谱由最小基表示,从而实现了稳定的解析延拓。该框架进一步提供了一种工具,用于分析蒙特卡罗数据需要达到何种精度才能解析预期谱函数的细节。